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ProtoMIL: Multiple Instance Learning with Prototypical Parts for Whole-Slide Image Classification

Dawid Rymarczyk, Adam Pardyl, Jarosław Kraus, Aneta Kaczyńska, Marek Skomorowski, Bartosz Zieliński

2023Lecture notes in computer science26 citationsDOIOpen Access PDF

Abstract

Abstract The rapid development of histopathology scanners allowed the digital transformation of pathology. Current devices fastly and accurately digitize histology slides on many magnifications, resulting in whole slide images (WSI). However, direct application of supervised deep learning methods to WSI highest magnification is impossible due to hardware limitations. That is why WSI classification is usually analyzed using standard Multiple Instance Learning (MIL) approaches, that do not explain their predictions, which is crucial for medical applications. In this work, we fill this gap by introducing ProtoMIL, a novel self-explainable MIL method inspired by the case-based reasoning process that operates on visual prototypes. Thanks to incorporating prototypical features into objects description, ProtoMIL unprecedentedly joins the model accuracy and fine-grained interpretability, as confirmed by the experiments conducted on five recognized whole-slide image datasets.

Topics & Concepts

Computer scienceInterpretabilityArtificial intelligenceMagnificationJoinsProcess (computing)Digital pathologyTransformation (genetics)Computer visionPattern recognition (psychology)Machine learningGeneChemistryBiochemistryProgramming languageOperating systemAI in cancer detectionDigital Imaging for Blood DiseasesCell Image Analysis Techniques
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